会议专题

Research on Credit Rating Model of P2P Project Based on Light GBM Algorithms

  Under the background of the development of big data and Internet finance, according to personal credit, we can effectively control the default rate of P2P projects to ensure the good operation of related financial projects or platforms. From the point of view of credit risk of P2P platform, taking the risk control of borrowers as the research objective, this paper constructs the evaluation index system of borrowers credit, and establishes the evaluation model of borrowers credit risk based on Light GBMalgorithm using the data of P2P network lending platform. It has been proved by practice that the model can predict the credit risk of P2P network credit borrowers well and has high-precision classification ability. At the same time, based on the results of the Light GBM algorithm to determine the factors affecting the default rate, the improvement content of the P2P platform and the development direction of the countries in this field can be clarified.

Light GBM Algorithm P2P Credit Rating

Pengcheng Sun

Economics and Management School, Jilin Agricultural Science and Technology University, Jilin, 132101, China

国际会议

2019 6th International Conference on Machinery, Mechanics, Materials and Computer Engineering (MMMCE 2019)(2019 第六届机械、材料和计算机工程国际会议)

呼和浩特

英文

345-348

2019-07-27(万方平台首次上网日期,不代表论文的发表时间)